Semantic Segmentation for Visually Adverse Images – A Critical Review

M. Hashmani, M. Memon, Kamran Raza
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引用次数: 1

Abstract

Semantic Segmentation is one of the high-end visual tasks that has remained a topic of interest in various domains. Segmentation of visual scenes was confined to the extraction of object boundaries present in the image data. However, with the progressive developments in technology, machines are expected to produce assistive decisions to aid versatile tasks. Subsequently, these assistive decisions are dependent on efficient results and must project information on a granular level from the visual scenes. The visual scenes are usually of vast variety depending on the scenarios in which the image data is captured. As per recent trends, semantic segmentation is still an open area of research, one of its worth mentioning challenges is to handle the visually adverse images. These visually adverse images are the result of low light/ high light, rain, fog and sometimes in the form of too many objects present in the scene. The study sheds light on the non-trivial problem and diverts attention to the gaps present in literature by providing in-depth critical analysis. This study comprehensively presents unidentified problems prevailing in existing semantic segmentation techniques. A critical literary study is conducted to examine the working mechanics of existing solutions to identify their limitations to produce accurate results for the visually adverse scenarios. The study discusses some of the possible reasons which result in erroneous semantic segmentation results for visually adverse images. Finally, the problems and challenges to be tackled are concluded which highlight the future direction of analysis.
视觉不良图像的语义分割研究综述
语义分割是高端视觉任务之一,一直是各个领域的研究热点。视觉场景的分割仅限于提取图像数据中存在的物体边界。然而,随着技术的不断发展,人们期望机器能够产生辅助决策,以帮助完成各种任务。随后,这些辅助决策依赖于有效的结果,并且必须从视觉场景中以颗粒级投射信息。视觉场景通常是多种多样的,这取决于捕获图像数据的场景。从目前的趋势来看,语义分割仍然是一个开放的研究领域,其中一个值得一提的挑战是如何处理视觉上不利的图像。这些视觉上不利的图像是低光/强光,雨,雾,有时以场景中太多物体的形式出现的结果。该研究揭示了非琐碎的问题,并通过提供深入的批判性分析,将注意力转移到文献中存在的差距上。本研究全面地提出了现有语义分割技术中存在的未被识别的问题。本文进行了一项批判性的文献研究,以检查现有解决方案的工作机制,以确定其局限性,从而为视觉不利的场景产生准确的结果。探讨了视觉不良图像语义分割结果出现错误的可能原因。最后,总结了需要解决的问题和挑战,并指出了未来的分析方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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